Основні поняття
UNITE introduces a novel approach to unsupervised video domain adaptation, leveraging masked pre-training and collaborative self-training to achieve significant performance improvements across domains.
Анотація
The study addresses the challenges of unsupervised domain adaptation in video action recognition. It introduces the UNITE pipeline, combining masked video modeling and self-training techniques. The research evaluates UNITE on multiple benchmarks, showcasing substantial performance gains compared to previous results. A detailed exploration of the methodology, experiments, and results is provided.
-
Introduction
- Advances in video action recognition driven by deep learning.
- Challenges of distribution shift in deploying models.
-
Related Work
- Techniques for video unsupervised domain adaptation.
- Methods using contrastive learning and intrinsic structure exploitation.
-
Preliminaries
- Problem formulation for unsupervised domain adaptation in action recognition.
- Importance of self-supervised initialization over supervised pre-training.
-
Method
- Description of the UNITE approach in three stages: pre-training, fine-tuning, and self-training.
-
Experiments
- Evaluation on Daily-DA, Sports-DA, and UCF↔HMDB_full benchmarks.
- Comparison with baselines and analysis of results.
-
Additional Analysis & Discussion
- Impact of different stages in UNITE on performance.
- Influence of data domains during pre-training on UDA outcomes.
- Comparison of pseudolabeling strategies for collaborative self-training.
-
Conclusions
- Summary of the study's findings and implications for future research.
Статистика
"Our approach, which we call UNITE, uses an image teacher model to adapt a video student model to the target domain."
"We evaluate our approach on multiple video domain adaptation benchmarks and observe significant improvements upon previously reported results."
"UNITE exceeds previously reported results on most domain shifts."
Цитати
"Our self-training process successfully leverages the strengths of both models to achieve strong transfer performance across domains."
"We present a series of ablation experiments that study the effectiveness of various aspects of the UNITE pipeline."